Eva Yi Xie
evayixie.bsky.social
Eva Yi Xie
@evayixie.bsky.social
Comp Neuro PhD student @ Princeton. Visiting Scientist @ Allen Institute. MIT’24
https://minzsiure.github.io
5/ ‼️Result 3: However, this robustness of slow transition comes with a tradeoff ↔️: heavier tails reduce the Lyapunov dimension of the network attractor, indicating lower effective dimensionality.
October 30, 2025 at 2:57 PM
3/ 🔎Result 2: Compared to Gaussian networks, we found finite heavy-tailed RNNs exhibit a broader gain regime near the edge of chaos: a *slow* transition to chaos. 🐢
October 30, 2025 at 2:56 PM
2/ 🔎Result 1: While mean-field theory for the infinite system predicts ubiquitous chaos, our analysis reveals *finite-size* RNNs have a sharp transition between quiescent & chaotic dynamics. 

We theoretically predict the gain of transition and validated it through simulations.
October 30, 2025 at 2:56 PM
Connectome suggests brain’s synaptic weights follow heavy-tailed distributions, yet most analyses of RNNs assume Gaussian connectivity. 

🧵⬇️ Our @alleninstitute.org #NeurIPS2025 paper shows heavy-tailed weights can strongly affect dynamics, trade off robustness + attractor dimension.
October 30, 2025 at 2:54 PM